http://doi.org/10.35668/2520-6524-2025-4-12
Vishnevsky A. V. — PhD in Engineering, Associate Professor, State university of trade and economics, 9, Kioto Str., Kyiv, Ukraine, 02156; a.vishnevsky@ukr.net; ORCID: 0000-0002-0510-7283
NYMPHAEA LOTUS GENOME SEQUENCE TRANSFORMATION INTO MUSIC USING DNA DATABASE
Abstract. The genetic music creation approach has been considered. Deciphering DNA sequences is based on the author’s algorithm. Appropriate software targeted on reading the genome sequence and translating it to a sound series has been written.
The use of random numbers in the musical composition makes it possible to get a musical signal that is original in structure but a little bit monotonous in its texture. With the aim of making it more interesting and eliminating the triviality of the musical score, which is a consequence of the automation of the music composition, a digital filter based on the solution of a linear differential equation in fractional derivatives operated by randomly changing the order of a fractional derivative (according to Caputo in a form of activation function of the neural scheme) is used.
Listener and creator parts of the extended version of “Aquarius” software now embrace the duality principle known in electrotechnics and applied physics.
Keywords: genetic music, DNA music, music composing software, neural network.
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